REBEL: Rule-based and Experience-enhanced Learning with LLMs for Initial Task Allocation in Multi-Human Multi-Robot Teams
Multi-human multi-robot teams combine the complementary strengths of humans and robots to tackle complex tasks across diverse applications. However, the inherent heterogeneity of these teams presents significant challenges in initial task allocation (ITA), which involves assigning the most suitable...
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Zusammenfassung: | Multi-human multi-robot teams combine the complementary strengths of humans
and robots to tackle complex tasks across diverse applications. However, the
inherent heterogeneity of these teams presents significant challenges in
initial task allocation (ITA), which involves assigning the most suitable tasks
to each team member based on their individual capabilities before task
execution. While current learning-based methods have shown promising results,
they are often computationally expensive to train, and lack the flexibility to
incorporate user preferences in multi-objective optimization and adapt to
last-minute changes in real-world dynamic environments. To address these
issues, we propose REBEL, an LLM-based ITA framework that integrates rule-based
and experience-enhanced learning. By leveraging Retrieval-Augmented Generation,
REBEL dynamically retrieves relevant rules and past experiences, enhancing
reasoning efficiency. Additionally, REBEL can complement pre-trained RL-based
ITA policies, improving situational awareness and overall team performance.
Extensive experiments validate the effectiveness of our approach across various
settings. More details are available at https://sites.google.com/view/ita-rebel . |
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DOI: | 10.48550/arxiv.2409.16266 |